基于代理模型的房地产宏观审慎政策分析

Gennaro Catapano, Francesco Franceschi, M. Loberto, V. Michelangeli
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引用次数: 13

摘要

在本文中,我们用意大利数据扩展和校准了Baptista等人2016年所描述的房地产行业基于代理的模型。我们设计了一种新的校准方法,该方法建立在多元基于矩的测量和一组三种搜索算法上:低差异序列,机器学习代理和遗传算法。然后,使用经过校准和验证的模型来评估三种假设的基于借款人的宏观审慎政策的效果:贷款与价值之比上限为80%,贷款服务与收入比率上限为30%,以及两种政策的组合。我们发现,在我们的框架内,这些政策干预往往会减缓信贷周期,降低抵押贷款违约的可能性。然而,就意大利房地产市场而言,我们发现,在5年的时间里,对房地产价格和抵押贷款违约的影响都非常小。后一种结果与意大利家庭部门财务状况良好的观点是一致的。最后,我们发现限制性政策导致需求向低质量住宅转移。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Macroprudential Policy Analysis via an Agent Based Model of the Real Estate Sector
In this paper, we extend and calibrate with Italian data the Agent-based model of the real estate sector described in Baptista et al., 2016. We design a novel calibration methodology that is built on a multivariate moment-based measure and a set of three search algorithms: a low discrepancy series, a machine learning surrogate and a genetic algorithm. The calibrated and validated model is then used to evaluate the effects of three hypothetical borrower-based macroprudential policies: an 80 per cent loan-to-value cap, a 30 per cent cap on the loan-service-to-income ratio and a combination of both policies. We find that, within our framework, these policy interventions tend to slow down the credit cycle and reduce the probability of defaults on mortgages. However, with respect to the Italian housing market, we only find very small effects over a five-year horizon on both property prices and mortgage defaults. This latter result is consistent with the view that the Italian household sector is financially sound. Finally, we find that restrictive policies lead to a shift in demand toward lower quality dwellings.
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